US8232908B2 - Inverse synthetic aperture radar image processing - Google Patents
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S13/00—Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
- G01S13/88—Radar or analogous systems specially adapted for specific applications
- G01S13/89—Radar or analogous systems specially adapted for specific applications for mapping or imaging
- G01S13/90—Radar or analogous systems specially adapted for specific applications for mapping or imaging using synthetic aperture techniques, e.g. synthetic aperture radar [SAR] techniques
- G01S13/904—SAR modes
- G01S13/9064—Inverse SAR [ISAR]
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S7/00—Details of systems according to groups G01S13/00, G01S15/00, G01S17/00
- G01S7/02—Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00
- G01S7/28—Details of pulse systems
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- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S7/00—Details of systems according to groups G01S13/00, G01S15/00, G01S17/00
- G01S7/02—Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00
- G01S7/41—Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00 using analysis of echo signal for target characterisation; Target signature; Target cross-section
- G01S7/411—Identification of targets based on measurements of radar reflectivity
Definitions
- This disclosure generally relates radar systems, and more particular to inverse synthetic aperture radar image processing.
- An inverse synthetic aperture radar generates images of moving targets by rotating the targets and processing the Doppler histories of the scattering centers.
- Inverse synthetic aperture radars may be utilized in maritime surveillance for the classification of ships and other objects. The images may be processed to enhance the quality of the images.
- inverse synthetic aperture radar (ISAR) image processing includes receiving an ISAR image from an inverse synthetic aperture radar.
- a standard deviation profile is generated from the ISAR image, where the standard deviation profile represents a standard deviation of the ISAR image.
- the standard deviation profile is normalized to form a normalized standard deviation profile.
- a mean value profile is generated from the ISAR image, where the mean value profile represents a mean value deviation of the ISAR image.
- the mean value profile is normalized to form a normalized mean value profile.
- the normalized standard deviation profile and the normalized mean value profile are combined to form a sum normalized range profile.
- a sum normalized range profile of an ISAR image takes into account the high mean values and high variance of peak scatterers of a target.
- the sum normalized range profile may be processed to classify a target in the ISAR image.
- the classification may provide more accurate target edge detection and length calculation, and may isolate more pertinent features.
- FIG. 1 illustrates one embodiment of an ISAR processing system that may classify a target using a sum normalized range profile (SNRP) derived from an ISAR image;
- SNRP sum normalized range profile
- FIG. 2 illustrates one embodiment of an image converter system that may be used to generate the sum normalized range profile
- FIG. 3 illustrates one embodiment of a threshold calculator that may be used with the apparent length calculator of FIG. 1 ;
- FIG. 4 illustrates one embodiment of a feature extractor system that may be used with the apparent length calculator of FIG. 1 ;
- FIGS. 5A through 5F illustrate embodiments of components that may be used by the apparent length calculator of FIG. 1 ;
- FIG. 6 is a graph illustrating an approximate probability of detection for apparent length estimation as a function of signal-to-noise ratio (SNR) and probability of false alarms;
- FIG. 7 is a graph illustrating a percent deviation from true length as a function of target endpoints for examples using sum normalized range profiles and examples using A-scan profiles.
- FIG. 8 illustrates example comparisons of length calculation using a sum normalized range profile versus using a normalized A-scan profile.
- FIG. 1 illustrates one embodiment of an ISAR processing system 28 that may classify a target using a sum normalized range profile (SNRP) derived from an ISAR image obtained by an inverse synthetic aperture radar 24 .
- the sum normalized range profile takes into account the high mean values and high variance of peak scatterers of a target.
- the sum normalized range profile may be processed to determine target characteristics.
- ISAR processing system 28 receives an ISAR image from an inverse synthetic aperture radar 24 .
- Radar 24 generates images of moving targets by transmitting radar signals toward a target, which reflects the signals.
- the target may be any suitable object that can reflect signals, such as a water, terrestrial, or airborne vehicle (for example, a ship, automobile, or airplane). Radar 24 then detects the reflected signals and generates an ISAR image from the detected signals.
- radar 24 may use video phase history (VPH) and auxiliary (AUX) data to generate an ISAR image.
- VPH video phase history
- AUX auxiliary
- the video phase history data represents complex in-phase and quadrature-phase (I/Q) data with axes of range bins versus rasters (or pulses).
- a two-dimensional raw ISAR image can be obtained by taking a two-dimensional range-Doppler Fast Fourier Transform (FFT) on the video phase history data.
- FFT Fast Fourier Transform
- Auxiliary data tracks radar motion.
- an ISAR image may be plotted on Doppler versus range axes.
- the range axis may better represent apparent lengths seen by radar 24 . Different points of a rotating target have different line of sight (LOS) velocities towards radar 24 , and thus yield different Doppler shifts. Accordingly, the Doppler axis might not provide height measurements as accurate as the length measurements provided by the range axis.
- LOS line of sight
- ISAR processing system 28 includes components such as a target tracker 29 , an aspect angle calculator 30 , an image converter 32 , an apparent length calculator 34 , an actual length calculator 36 , and a target classifier 38 .
- target tracker 29 tracks the position of the target.
- Aspect angle calculator 30 determines the aspect angle of the target.
- Image converter 32 adjusts the image from an ISAR format to a format compatible with apparent length calculator 34 .
- Apparent length calculator 34 determines the apparent length of the target.
- Actual length calculator 36 determines an actual length (or true length) of the target from the aspect angle and the apparent length.
- Aspect angle calculator 30 determines the aspect angle of the target in any suitable manner.
- the aspect angle of a target may be defined as the angle between the longitudinal axis of the target and the radar line of sight (LOS) towards the target.
- the radar line of sight may be determined from an azimuth tracker.
- Aspect angle calculator 30 may determine the aspect angle from consecutive target point locations. Any suitable number of target point locations (such as three, four, or five locations) in any suitable coordinate system (such as in a North-East Down (NED) coordinate system) may be used. The target point locations may be taken at a rate that is longer than (for example, four, five, or six times longer than) the update image refresh rate to minimize fleeting fluctuations of the azimuth tracker.
- Aspect angle calculator 30 may utilize a Least-Squares (LS) fit to find a two-dimensional linear fit for the points to determine the longitudinal angle. Aspect angle calculator 30 may then determine the aspect angle from the longitudinal angle.
- LS Least-Squares
- the value of the aspect angle affects the error of the length measurement.
- Aspect angles of 0 ⁇ 10 degrees may yield errors of +10 degrees, which in turn may yield length errors of at most 5 percent.
- Aspect angles of 10 ⁇ 45 degrees may yield length errors of at most approximately 10 percent.
- the aspect angles may be restricted to 0 ⁇ 45 degrees.
- Image converter 32 adjusts the image from an ISAR format to a format compatible with apparent length calculator 34 .
- Apparent length calculator 34 determines an apparent length of the target from the image.
- the apparent length may be the length of a target as the target appears in an image, without taking into account the aspect angle of the target. Operations performed by apparent length calculator 34 are described in more detail with reference to FIGS. 3 through 5F .
- Actual length calculator 36 determines an actual length (or true length) of the target from the aspect angle and the apparent length.
- the actual length of a target may be a length measurement of the target that takes into account the aspect angle of the target.
- the actual length True_length may be calculated from the apparent length Apparent_length L a and the aspect angle Aspect_angle ⁇ according to the formula:
- True_length Apparent_length cos ⁇ ( Aspect_angle ) ⁇ L a cos ⁇ ( ⁇ ) .
- Target classifier 38 classifies the target according to properties of the target, such as the actual length of the target.
- target classifier 38 extracts features (such as peaks) from the sum normalized range profile to identify one or more properties of the target, and determines if the properties of the target matches one or more properties of a known object.
- the target may be a ship. If the actual length of the target is greater than 200 feet, then the target may be classified as a combatant ship.
- target classifier 38 may request further information if a target cannot be classified. For example, large commercial liners, such as cruise ships, may be as long as combatants. Target classifier 38 may request additional details about the target, such as a flat upper surface indicating that the ship may be an aircraft carrier.
- features of the sum normalized range profile may be used with more complex mapping techniques, such as Gaussian Mixture Models or Neural Network based classifiers for automatic target recognition purposes.
- FIG. 2 illustrates one embodiment of image converter system 32 that may be used with apparent length calculator 34 of FIG. 1 .
- ISAR image converter system 32 includes a plurality of components, such as a squaring module 12 , an absolute value module 14 , a standard deviation calculator 16 , a mean value calculator 18 , normalization modules 20 and 22 , and a combiner 24 .
- image converter system 32 receives one or more ISAR images from inverse synthetic aperture radar 24 through an interface.
- Standard deviation calculator 16 and normalization module 20 generate a normalized standard deviation profile from the ISAR image.
- Mean value calculator 18 and normalization module 22 generate a normalized mean profile from the ISAR image.
- Combiner 24 then combines the normalized standard deviation profile with the normalized mean profile to yield a sum normalized range profile.
- Standard deviation calculator 16 generates a standard deviation profile from an ISAR image.
- the standard deviation profile represents a standard deviation of the image.
- the standard deviation profile may be generated in any suitable manner.
- standard deviation calculator 16 may yield a standard deviation over the Doppler for specific range bins at a time, associated with the
- Normalization module 20 normalizes the standard deviation profile in any suitable manner to form a normalized standard deviation profile.
- Mean value calculator 18 generates a mean value profile from the image.
- the mean value profile representing a mean value deviation of the image.
- mean value calculator 18 may yield a mean over the Doppler for specific range bins at a time, associated with the
- Normalization module 22 normalizes the mean value profile in any suitable manner to form a normalized mean value profile.
- Combiner 24 combines the normalized standard deviation value with the normalized mean value to yield a sum normalized range profile.
- the sum normalized range profile can be thought of a sum of two different distributions: one from the means and one from the standard deviations of the exponentials.
- the profile may capture the high mean values and high variance (that is, the square of the standard deviation (std)) values of the peak scatterers of a target.
- the sum normalized range profile may be used by ISAR processing system 28 to determine the true length of a target.
- the sum normalized range profile represents the first order and second order statistics of a two-dimensional ISAR image in a one-dimensional sum normalized range profile vector.
- the mean ⁇ can be expressed as a normalized discrete sum of the distribution points:
- Normalization may be performed after determining the mean and standard deviation distributions. To simplify the calculations, normalization closely matches the rate parameters of the Gamma distributions, where rate is the inverse of the scale parameters.
- the Jacobian magnitude is:
- the marginal probability density function (pdf) may be found using:
- ⁇ ⁇ ( b 1 + b 2 ) ⁇ 0 ⁇ ⁇ ( x 1 + x 2 ) b - 1 ⁇ e - ( x 1 + x 2 ) ⁇ d ( x 1 + x 2 ) .
- f ⁇ ( u ) c ( b 1 + b 2 ) ⁇ e - cu ⁇ u b 1 + b 2 - 1 ⁇ ⁇ ( b 1 + b 2 ) .
- the mean for the distribution is:
- FIG. 3 illustrates one embodiment of a threshold calculator 40 that may be used with apparent length calculator 34 of FIG. 1 .
- the most likely noise values may be isolated before applying a threshold technique.
- an initial iterative loop may use an initial threshold to isolate the noise regions.
- threshold calculator 40 includes an initial threshold T 0 generator 70 , a below initial threshold filter 72 , a median operator 74 , an initial threshold error calculator 76 , an above initial threshold error filter 78 , a below initial threshold error filter 80 , and a threshold output 82 .
- Initial threshold generator 70 determines an initial threshold from a sum normalized range profile.
- Below threshold filter 72 selects points of the sum normalized range profile that are below the threshold, and median operator 74 takes the median for the selected points.
- Initial threshold error calculator 76 calculates the error of the initial threshold.
- Above error threshold filter 78 returns points that are above the error threshold to threshold calculator 70 .
- Below error threshold 80 selects points that are below the error threshold.
- Threshold output 82 outputs the threshold 84 .
- the In-phase (I) and Quadrature (Q) components can be assumed to be independent. Also, their respective noisy distributions may be regarded as Gaussian, each with a distribution N( ⁇ , ⁇ 2 ), where ⁇ represents the mean and ⁇ 2 represents the variance. The target may be assumed to be isolated with only background noise to contend with for recognition purposes.
- f IQ ⁇ ( iq ) 1 2 ⁇ ⁇ ⁇ ⁇ ⁇ 2 ⁇ exp ⁇ ( - i 2 + q 2 2 ⁇ ⁇ ⁇ 2 ) .
- polar coordinate conversions r ⁇ square root over ( i 2 +q 2 ) ⁇ and
- ⁇ tan - 1 ⁇ ( q i ) (where ⁇ is an uniform distributed random variable from [ ⁇ , ⁇ ]) may be used.
- the Jacobian magnitude yields:
- Function ⁇ R (r) is a Rayleigh random variable with parameter ⁇ 2 . Accordingly, each ISAR image pixel can be approximated as a Rayleigh random variable.
- the ISAR image can be subsequently squared to convert the Rayleigh random variables to exponential random variables.
- the pixels represent exponential random variables.
- the inverse synthetic aperture radar process converts the image to real intensity values (such as values 0-255). Accordingly, taking the absolute value may not be required.
- FIG. 4 illustrates one embodiment of a feature extractor system 42 that may be used with apparent length calculator 34 of FIG. 1 .
- feature extractor system 42 includes a plurality of components, such as a threshold determiner 84 , a below threshold filter 86 , an above threshold filter 88 , a isolated point refiner 44 , a feature extractor 46 , an intervals locator 48 , a combat shadowing effects module 50 , and a target region isolator 52 .
- feature extractor system 42 may identify one or more range bins that correspond to a target.
- refined range bins may be identified according to intensity values of points of the sum normalized range profile.
- Range bins associated with peak values of the sum normalized range profile may be identified.
- One or more candidate range bin intervals may be determined from the refined range bins and peak range bins.
- a candidate range bin interval with the largest number of detections may be identified as the range bin interval of the target.
- Isolated point refiner 44 determines points of interest, that is, points corresponding to the target, from points that are not of interest, such as points of a false alarm (FA), a clutter patch, or another target. In certain embodiments, isolated point refiner 44 performs a series of refining stages to remove points that are not of interest. In certain embodiments, isolated point refiner 44 may select points of interest of the sum normalized range profile according to intensity values of the points.
- points of interest that is, points corresponding to the target, from points that are not of interest, such as points of a false alarm (FA), a clutter patch, or another target.
- isolated point refiner 44 performs a series of refining stages to remove points that are not of interest.
- isolated point refiner 44 may select points of interest of the sum normalized range profile according to intensity values of the points.
- isolated point refiner 44 receives points (range bin values) that satisfy threshold T. For each point, intensity values of +/ ⁇ N range bins are averaged to attain an upper and lower intensity value for the point. In certain embodiments, if either the upper or lower intensity value crosses another predetermined threshold, the associated point is deemed a potential target range bin.
- intervals locator 48 is used to determine target regions from the separation among selected range bin values. If the separation between successive range bin values is greater than a threshold, the range bin values are flagged as an end and start of a new target region. In certain embodiments, isolated point refiner 44 and intervals locator 48 yield refined range bin intervals that may correspond to one or more targets.
- Feature extractor 46 and combat shadowing effects module 50 may be used to reduce shadowing effects.
- Inverse synthetic aperture radars may exhibit a problem known as shadowing in which a single target may be depicted in the derived ISAR image as two or more targets. Shadowing may lead to an underestimation of the target length.
- Feature extractor 46 extracts features from the sum normalized range profile.
- feature extractor 46 may isolate the top peak sum normalized range profile values and corresponding peak range bins. The top 15 to 25 percent, such as the 20 percent, values may be isolated.
- combat shadowing effects module 50 determines candidate range bin intervals from the peak range bins and the refined range bins.
- the top peak range bin interval from feature extractor 46 should be encompassed within at least one of the range bin intervals from isolated point refiner 44 . If they do not, combat shadowing effects module 50 performs a subsequent fill of range bins to allow the bins to encompass the range bin interval from isolated point refiner 44 .
- the candidate range bin intervals from 48 may be [100 145], [160 230], and [250 280], and top percentage peaks may occur in range bin intervals [130 190].
- the subsequent fill after 50 may yield candidate target range interval regions of [100 230] and [250 280].
- Target region isolator 52 isolates the target region.
- target region isolator 52 determines the quantity of detections (with respect to the first threshold value T) inside the candidate range bin intervals from combat shadowing effects 50 .
- the range bin interval with the largest number of detections is denoted as the target range bin interval.
- FIGS. 5A through 5F illustrate embodiments of components that may be used by apparent length calculator 34 of FIG. 1 .
- FIG. 5A illustrates an input/output schematic for an initial threshold module 40 .
- the output may be sum_threshold_new, which represents the algorithmic initial threshold setting. Sum_threshold_new may be subsequently alpha-tracked to maintain a smoother threshold.
- FIG. 5B illustrates an input/output schematic for the isolated point refiner 44 .
- the inputs include: sum_norm; length-flags, which represents the range bins of hits (that is, points that pass above the final threshold); and T x , which represents the final threshold setting.
- Isolated point refiner 44 looks at both ⁇ N_ind points from a hit and takes the subsequent means of the associated intensity values. If either or both of these means cross X i ⁇ T x , the hit is kept as an pertinent event. A hit may also be kept is if the hit's intensity crosses X i+1 ⁇ T x , where X i+1 >X i . If conservative higher thresholds are used, then lower X i and X i+1 may be used. If non-conservative lower thresholds are used (for example, for better edge and/or length detection), the higher X i and X i+1 may be used to remove otherwise rampant false alarms.
- the output is length_flags 2 , which represents the range bins that are associated with the relevant hits after throwing out per-chance passers.
- FIG. 5C illustrates an input/output schematic for the feature extractor 46 .
- the inputs includes: sum_norm; length_flags 2 ; and top_per, which represents the top percentage number of highest peaks kept as features.
- the outputs include K 1 , which represents the intensity rank (where a lower value indicates higher intensity) associated with the sorted range bins of the peaks; and index_peaks, which represents the sorted range bins of the peaks.
- FIG. 5D illustrates an input/output schematic for the intervals locator 48 .
- the inputs include: length_flags 2 ; rng_disp, which represents the quantity of range bin pixels on the inverse synthetic aperture radar image display; and max_pixel_spacing, which represents the maximum spacing between any two subsequent hit range bins that can be considered as the same target.
- the output is length_flags 3 , which represents the one or more candidate hit range bin intervals.
- FIG. 5E illustrates one embodiment of an input/output schematic for a combat shadowing effects module 50 .
- the inputs include: top_peaks, which represents the two-dimensional array that indicates the top peak range bins and associated intensity rank; and length_flags 3 .
- the output is length_flags 3 , which represents the one or more refined candidate hit range bin intervals.
- the range bin interval associated with the stored features may be required to be fully encompassed by one of the candidate intervals of input length_flags 3 .
- FIG. 5F illustrates one embodiment of an input/output schematic for target region isolator 52 .
- the inputs include: length_flags 3 ; and rng_disp, which represents the quantity of range bin pixels on the inverse synthetic aperture radar image display.
- the output is length_flags 3 , which represents the singleton range bin interval that is associated with the most hits, as designated by the target of interest.
- the apparent length procedure may be performed twice, once with a conservative threshold and once with a non-conservative threshold, to yield two lengths.
- the final apparent length may be a predefined weighted combination of the conservative and non-conservative apparent lengths. If the difference between the lengths is statistically too large, then the conservative apparent length is selected as the output final apparent length. A large statistical anomaly may be due to a significantly lowered threshold, leading to increased false alarms. This defeats the purpose of using the non-conservative threshold to attain better target edge detection.
- the apparent length from the conservative threshold is 130 range bins, and the non-conservative apparent length is 140 range bins. If the weighting is 50% each, then the final apparent length output is 135 range bins. In another example, the apparent length from the conservative threshold is 130 range bins, and for the non-conservative apparent length is 190 range bins. The difference between the lengths is statistically too large, so 130 range bins is selected as the output apparent length.
- the mean is:
- the probability of false alarms is the area under the noise pdf that crosses a determination threshold T:
- the probability of detection P det represents the probability of detecting an endpoint at a particular probability of false alarms and signal-to-noise ratio (SNR).
- the probability of detection is the area under the signal+noise pdf from T to ⁇ :
- the SNR may be referenced to the image domain, which is not exponentially distributed yet.
- SNR 10 ( 2 ⁇ SNR d ⁇ ⁇ B 10 ) , where SNR dB is the SNR in dB in the image domain.
- the probability P med of attaining the correct apparent length estimation using the median operator may be calculated by isolating the processes of attaining a correct apparent length (within some acceptable error bounds) at any given single opportunity and the benefits of using the median operator.
- the median operator's benefits can be based on equal probability of the cases: the length being too short (S), too long (L), or correct (C). Each case has a one-third probability of occurring, because determining the correct apparent length is already taken care of with an extrapolation of the previously derived P det , which takes into account the probability of false alarms and SNR levels.
- the median operator can be thought of as either a sorted middle value or the point where the cumulative distribution function (CDF) of the probability distribution is equal to one-half. It is the former that applies most for this derivation.
- the probability of detecting a correct apparent length (that is, of detecting each endpoint at a particular SNR and probability of false alarms) within a specified error bounds may be defined as P det 2 .
- the probability of correct apparent length determination within some acceptable error bounds when using the median operator may be defined as P d .
- P d min ⁇ ( P det 2 ⁇ 303 243 , 1 ) ⁇ min ⁇ ( 5 4 ⁇ P det 2 , 1 ) .
- the probability is capped at 1 (or 100 percent) and
- the probabilities are referenced in the image domain, and may be translated to the sum normalized range profile domain.
- the probabilities may be translated by empirically deriving the added SNR (for example, in dB) that is required to have the same algorithmic detection in the sum normalized range profile as in the image domain.
- FIG. 6 is a graph illustrating an approximate probability of detection for apparent length estimation as a function of SNR and probability of false alarms.
- SNR target endpoint average
- probability of false alarms 1e-4 (reasonable setting)
- SNR signal to interference ratio
- SIR_endpts 10 ⁇ log 10 ⁇ ( mean ⁇ ( max ⁇ ( max ⁇ ( ⁇ image ⁇ ( : , endpt_rangebin ) ⁇ ) ) ) mean ⁇ ( mean ⁇ ( ⁇ Noise_source ⁇ ) ) ) .
- the mean in the numerator accounts for a value for the leftmost and rightmost target endpoints.
- Noise_source represents a set of intensities associated with noise/clutter pixel samples in an ISAR image.
- the feature extraction capabilities of the sum normalized range profile and the high resolution range (HRR)/A-scan profile may be compared.
- the ISAR images are attained at Ultra-High Resolution (UHR).
- the top for example, the top two or three
- target peak scatterer (PS) range bins for an ISAR image may be found using the sum normalized range profile and using the A-scan profile (with a non-coherent sum of pulses).
- the ISAR image may be two-dimensional, and the profiles may be one-dimensional.
- a value is the deviation (in range bins) from the true bin locations calculated from the ISAR image to the bin locations found using the length estimator algorithm on the sum normalized range profile or A-scan profile.
- TABLE 1 illustrates examples of such values.
- TABLE 1 illustrates the differences between using the sum normalized range profile and using the A-scan profile.
- the isolation of two particular target points of interest from a two-dimensional image to a one-dimensional vector has inherent degradations.
- the A-scan profile compounds the degradations because the A-scan profile is based solely on summing over the Doppler dimension in an ISAR image.
- the sum normalized range profile may be more robust than the A-scan profile for feature extraction using peak scatterer locations.
- the sum normalized range profile may yield less variance among subsequent length determinations than that of the A-scan profile.
- the sum normalized range profile may be preferred for total classification because the sum normalized range profile attains a viable apparent length estimate and can encode specific target features, such as locations of prominent peak scatterers.
- FIG. 7 is a graph illustrating a percent deviation from true length as a function of target endpoints for an example sum normalized range profile and an example A-scan profile.
- Using an A-scan profile or using a sum normalized range profile yields similar performance because half of the sum normalized range profile distribution comes directly from the normalized A-scan profile.
- the length determinations from the sum normalized range profile may be more robust when looking at length determination variance values from one time to the next.
- the apparent length estimate falls within a ⁇ 10 percent of true apparent length if: (1) there are no overwhelming land returns that span a majority of range bins (that is, the inverse synthetic aperture radar littoral enhancements are working properly); (2) the SNR at the target edge endpoints are at least 10 dB; (3) and the aspect angle ⁇ is 0 ⁇ 45.
- FIG. 8 illustrates an example comparison of length calculation using a sum normalized range profile versus using a normalized A-scan profile.
- a component (such as a module) of the systems described in the embodiments may include an interface, logic, memory, and/or other suitable element.
- An interface receives input, sends output, processes the input and/or output, and/or performs other suitable operation.
- An interface may comprise hardware and/or software.
- Logic performs the operations of the component, for example, executes instructions to generate output from input.
- Logic may include hardware, software, and/or other logic.
- Logic may be encoded in one or more tangible media and may perform operations when executed by a computer.
- Certain logic, such as a processor, may manage the operation of a component. Examples of a processor include one or more computers, one or more microprocessors, one or more applications, and/or other logic.
- the operations of the embodiments may be performed by one or more computer readable media encoded with a computer program, software, computer executable instructions, and/or instructions capable of being executed by a computer.
- the operations of the embodiments may be performed by one or more computer readable media storing, embodied with, and/or encoded with a computer program and/or having a stored and/or an encoded computer program.
- a memory stores information.
- a memory may comprise one or more tangible, computer-readable, and/or computer-executable storage medium. Examples of memory include computer memory (for example, Random Access Memory (RAM) or Read Only Memory (ROM)), mass storage media (for example, a hard disk), removable storage media (for example, a Compact Disk (CD) or a Digital Video Disk (DVD)), database and/or network storage (for example, a server), and/or other computer-readable medium.
- RAM Random Access Memory
- ROM Read Only Memory
- mass storage media for example, a hard disk
- removable storage media for example, a Compact Disk (CD) or a Digital Video Disk (DVD)
- database and/or network storage for example, a server
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Abstract
Description
where N represents the range bins in the distribution, and ƒ(x=xi) represents the distribution along the Doppler axis for the exponential pixel-squared values for a particular range bin i. This yields a Gamma distribution scaled by 1/N, whereby the scale factor does not change the distribution type.
There are no covariance terms due to the assumption of independence. The standard deviation std is:
The resulting distribution has Gamma type properties.
Then:
g(u,v)dudv=ƒ(x 1 ,x 2)dx 1 dx 2=ƒ(x 1 ,x 2)·u·dudv=ƒ(x 1)·ƒ(x 2)·u·dudv.
where
The latter equation shows the benefits of using mixed notations for this derivation:
The mean for the distribution is:
The standard deviation for the distribution, due to independence, is:
Accordingly, threshold T=μ+k·σ can be applied.
r=√{square root over (i 2 +q 2)} and
(where θ is an uniform distributed random variable from [−π,π]) may be used. The recognized solution is i=r cos(θ) and q=r sin(θ). The Jacobian magnitude yields:
Thus, for 0<r<∞ and |θ|<π:
Independence yields:
Function ƒR(r) is a Rayleigh random variable with parameter σ2. Accordingly, each ISAR image pixel can be approximated as a Rayleigh random variable.
where β represents the scale parameter, may be used. The transformation of the exponential form to the Rayleigh form is of the form
In this case:
Thus:
The final substitution of
yields:
The mean is:
Thus, the noise pdf is:
Solving for the threshold to maintain a constant false alarm rate yields:
Noise corrupts the whole signal, so to determine the probability of detecting the superposition of an exponentially fluctuating signal in exponential noise is assumed. The mean of the distribution is:
E[ƒ S+N(s)]=E[ƒ S(s)]+E[ƒ N(n)]=μS+μN.
where the signal+noise pdf is:
where SNRdB is the SNR in dB in the image domain.
that is equally probable amongst the three states S, L, and C.
Cases with two C's. There are correct classifications in
Cases with one C. There is a correct classification only if S and L occur, that is, there are correct classifications in
cases (or C1 1·C1 2·C1 3=3!=6=P1 3 cases).
Cases with one C. There are correct classifications only if there are two S's and two L's, that is, there are correct classifications in
Cases with three C's. There are correct classifications in
Cases with two C's. There is a correct classification only if there is at least one S and one L, which may be expressed as (cases with two C's in five slots)*(cases with an L or S)*(cases with two S's or two L's respectively in remaining three slots). Thus, there are correct classifications in
There is an increase when using five stored length values instead of a single value.
where Ak=probability of attaining the correct length (within some bounds) when assuming equally probable short, long, or correct length cases, with k stored length values, where k equals, for example, 1, 3, 5.
where when using five stored length values yields:
The probability is capped at 1 (or 100 percent) and
The mean in the numerator accounts for a value for the leftmost and rightmost target endpoints. Noise_source represents a set of intensities associated with noise/clutter pixel samples in an ISAR image.
| TABLE 1 | ||
| Average deviation (range bins) from true top two PS locations | ||
| Trial # | SNRP PS1 | A-scan PS1 | SNRP | A-scan PS2 | |
| 1 | 6.0 | 87.6 | 16.9 | 56.4 |
| 2 | 5.8 | 40.1 | 37.6 | 43.7 |
| 3 | 2.4 | 17.2 | 4.4 | 16.6 |
| 4 | 16.2 | 12.6 | 15.5 | 15.9 |
Each table value represents the mean of 30 peak scatterer determinations (one per ISAR image). The first three trials were performed to find targets with finitely spaced peak scatterer locations, that is, locations that do not occur within a small range bin, which can also be found through visual inspection in the image domain. The last trial dealt with a target exhibiting a significant superstructure that contained many scatterers of high intensity in a small bin range.
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| US12/489,909 US8232908B2 (en) | 2008-06-26 | 2009-06-23 | Inverse synthetic aperture radar image processing |
| PCT/US2009/048391 WO2010039303A2 (en) | 2008-06-26 | 2009-06-24 | Inverse synthetic aperture radar image processing |
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| CN115661672B (en) * | 2022-10-24 | 2023-03-14 | 中国人民解放军海军工程大学 | PolSAR image CFAR detection method and system based on GMM |
| JP7646780B1 (en) | 2023-10-06 | 2025-03-17 | 株式会社東芝 | Imaging radar device, correction device, correction method, and program |
Citations (3)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| US6337654B1 (en) | 1999-11-05 | 2002-01-08 | Lockheed Martin Corporation | A-scan ISAR classification system and method therefor |
| US6987560B2 (en) * | 2003-05-30 | 2006-01-17 | The Boeing Company | Inverse synthetic aperture radar-based covert system for human identification |
| US7289060B1 (en) * | 2006-05-24 | 2007-10-30 | Raytheon Company | Super high range resolution amplitude and range principal scatterer (SHARP) classifier |
-
2009
- 2009-06-23 US US12/489,909 patent/US8232908B2/en active Active
- 2009-06-24 WO PCT/US2009/048391 patent/WO2010039303A2/en active Application Filing
- 2009-06-24 EP EP09801327.9A patent/EP2304464B1/en active Active
Patent Citations (4)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| US6337654B1 (en) | 1999-11-05 | 2002-01-08 | Lockheed Martin Corporation | A-scan ISAR classification system and method therefor |
| US6437728B1 (en) | 1999-11-05 | 2002-08-20 | Lockheed Martin Corporation | A-scan ISAR target recognition system and method |
| US6987560B2 (en) * | 2003-05-30 | 2006-01-17 | The Boeing Company | Inverse synthetic aperture radar-based covert system for human identification |
| US7289060B1 (en) * | 2006-05-24 | 2007-10-30 | Raytheon Company | Super high range resolution amplitude and range principal scatterer (SHARP) classifier |
Non-Patent Citations (3)
| Title |
|---|
| European Patent Office; Communication pursuant to Article 94(3) EPC; Application No. 09 801 327.9-1248; 5 pages, Jul. 5, 2011. |
| Frank E. McFadden and Scott A. Musman, "Optimizing Ship Length Estimates from ISAR Images", Proceedings of the IEEE-INNS-ENNS International Joint Conference on Neural Networks (IJCNN '00), 6 pages, Jul. 2000. |
| PCT, Notification of Transmittal of the International Search Report and the Written Opinion of the International Searching Authority, or the Declaration, International Application No. PCT/US2009/048391, 11 pages, Jun. 7, 2010. |
Cited By (2)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| US9299010B2 (en) | 2014-06-03 | 2016-03-29 | Raytheon Company | Data fusion analysis for maritime automatic target recognition |
| US10782396B2 (en) * | 2014-12-08 | 2020-09-22 | Northrop Grumman Systems Corporation | Variational track management |
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